Making predictions with
Big Data
Technology is playing a
ubiquitous role in our daily lives—whether it’s policing a city, speeding up
financial transactions or transforming supply chains
At first glance, the letter from the
Delhi police commissioner’s desk could have easily been dismissed as another
routine laundry list of his department’s “achievements” in the previous year.
A closer look at the letter, written
a little over two years ago, would have sprung a pleasant surprise in the
context of the city police’s technology prowess.
The Delhi Police, according to the
letter, had partnered with the Indian Space Research Organisation to implement
CMAPS—Crime Mapping, Analytics and Predictive System—under the “Effective use
of Space Technology-based Tools for Internal Security Scheme” initiated by
Prime Minister Narendra Modi in 2014.
CMAPS generates crime-reporting
queries and has the capacity to identify crime hotspots by auto sweep on the
Dial 100 database every 1-3 minutes, replacing a Delhi Police crime-mapping
tool that involved manual gathering of data every 15 days. It performs trend
analysis, compiles crime and criminal profiles and analyses the behaviour of
suspected offenders—all with accompanying graphics. CMAPs also has a security
module for VIP threat rating, based on vulnerability of the potential target
and the security deployed, and advanced predictive analysis, among other
features.
A prototype of the standalone
version was installed at the Delhi Police control room in June 2015. The
software’s statistical models and algorithms today help the police carry out
“predictive policing” to forecast where the next crime is likely to occur, much
like in cities such as London, Los Angeles, Kent and Berlin.
That’s just one example of how
technology is playing a ubiquitous role in our daily lives—whether it’s
policing a city, speeding up financial transactions or transforming supply
chains.
Fintech start-up Lendingkart
Technologies has developed tools based on big data analytics to help lenders
evaluate borrowers’ creditworthiness. Using these tools, its sister company
Lendingkart Finance Ltd aims to transform small business lending by providing
easy access to credit for small and medium enterprises.
The “technology platform has helped
create a highly operational efficiency model that enables swift loan
disbursement within 72 hours of loan application. Over 120,000 SMEs (small and
medium-sized enterprises) have till date reached out to Lendingkart Finance for
their credit needs,” the company said.
Accenture Labs and Akshaya Patra,
the world’s largest NGO-run midday meal programme, said on Thursday that they
had partnered in a project to “exponentially increase the number of meals
served to children in schools in India that are run and aided by the
government”.
Using “disruptive technology”, they
hope to potentially “improve efficiency by 20%, which could boost the number of
meals served by millions”.
Accenture Labs began the project
with a “strategic assessment and design thinking, then developed a prototype
for improving kitchen operations and outcomes”. An example of Akshaya Patra’s
transformation, according to Thursday’s statement, was its move “from manual
collection of feedback from children and schools to a more efficient
technology-based solution” that involved the use of blockchain (the underlying
technology of cryptocurrencies like bitcoin) and sensor-enabled devices to
gather feedback digitally, and use artificial intelligence (AI) technologies to
“predict the next day’s meal requirements”.
Consider another example. Until even
early 2015, the thousands of distributors of consumer goods firm Marico Ltd in
Mumbai used to place orders and wait “almost a day” before getting the goods
delivered. Now it takes just 10-15 minutes for an order to be delivered,
helping them stock fewer goods. In turn, the lower inventory helps them cut
down on warehouse space and pare costs, besides reducing the waiting time for
trucks. All these distributors have benefited from an analytics-driven Order
Management Execution System that the company launched in December 2014.
What exactly is big data analytics?
Big Data and the so-called Internet
of Things (IoT) are intimately connected: billions of Internet-connected
“things” will, by definition, generate massive amounts of data. By 2020, the
world would have generated around 40 zettabytes of data, or 5,127 gigabytes per
individual, according to an estimate by research firm International Data Corp.
It’s no wonder that in 2006, market researcher Clive Humby declared data to be
“the new oil”.
Companies are sharpening their focus
on analysing this deluge of data to understand consumer behaviour patterns. A
report by software body Nasscom and Blueocean Market Intelligence, a global
analytics and insight provider, predicts that the Indian analytics market will cross
the $2 billion mark by this fiscal year.
Companies are using Big Data
analytics for everything—driving growth, reducing costs, improving operations
and recruiting better people.
In hospitals, intelligence derived from data helps improve
patient care through quicker and more accurate diagnoses
A major portion of orders of
e-commerce firms now come through their analytics-driven systems. These firms
record the purchasing behaviour of buyers and customize things for them. Travel
firms, on their part, use data analytics to understand their customers—from
basic things like their travel patterns, the kind of hotels they like to stay
in, who their typical co-travellers are, their experiences—all geared to giving
the customer a personalized experience the next time the customer visits the
website.
In hospitals, intelligence derived
from data helps improve patient care through quicker and more accurate
diagnoses, drug dosage recommendations and the prediction of potential side
effects. Millions of electronic medical records, public health data and claims
records are being analysed.
Predictive healthcare using
wearables to check vital medical signs and remote diagnostics could cut patient
waiting times, according to a 13 January report by the McKinsey Global Institute.
International Business Machines Corp.’s Watson, a cluster of computers that
combines artificial intelligence and advanced analytics software and works as a
“question answering” system, is being used for a variety of applications, most
notably in oncology, the branch of medicine that deals with cancer. Watson for
Oncology helps physicians quickly identify key information in a patient’s
medical records, sift through tons of data and come up with most optimal
medical choices.
Many companies globally and in
India, including some start-ups, are using machine-learning tools to infuse
intelligence in their business by using predictive models. Popular
machine-learning applications include Google’s self-driving car, online
recommendations from e-commerce companies such as Amazon and Flipkart, online
dating service Tinder and streaming video platform Netflix.
Railigent, Siemens AG’s platform for
the predictive maintenance for trains, listens to the trains running over its
sensors and can detect, from the sound of the wheels, which wheel is broken and
when it should be replaced.
Predictive algorithms are used in
recruitment too. Aspiring Minds, for instance, uses algorithms powered by
machine learning that draw on data to address complex issues—for instance, to
accurately gauge the quality of speech in various accents against a neutral
accent (also using natural language processing). This helps companies improve
recruitment efficiency by over 35% and reduce voice evaluation costs by 55%.
Artificial intelligence, machine-learning-based
algorithms and anomaly-detection techniques will need to be used to monitor
activity across networks and real-time data streams, consulting firms point
out. These technologies will, for instance, let banks in India identify threats
as they occur while maintaining low false positive alarm rates even for new
types of threats.
There are still challenges in
bringing about wider technology adoption.
“Our survey showed that only about
4% of companies across industries have the capabilities to use advanced data
analytics to deliver tangible business value. While some oil and gas companies
have invested in their analytics capabilities, many struggle to get their arms
around this powerful new opportunity,” said a March 2014 note by Bain and Co..
“We often find that senior
executives understand the concepts around Big Data and advanced analytics, but
their teams have difficulty defining the path to value creation and the
implications for technology strategy, operating model and organization. Too often,
companies delegate the task of capturing value from better analytics to the IT
department, as a technology project,” the note pointed out.
In the 2006 movie Deja Vu,
law enforcement agents investigate an explosion on a ferry that kills over 500
people, including a large group of party-going sailors. They use a new program
that uses satellite technology to look back in time for four-and-a-half days—to
try to capture the terrorist.
Predictive policing is surely not as
advanced today. And advances in predictive analytics can certainly raise
ethical issues. For instance, the police may in the future be able to predict
who might become a serial offender, and make an intervention at an early stage
to change the path followed by the person, as is the case in Deja Vu.
Or an insurance firm may use predictions to increase the premium or even deny a
user an insurance.
Any disruptive technology needs
checks and balances in the form of good policy if it is to deliver to its
potential.
Source | Mint | 21 April 2017
Regards!
Librarian
Rizvi Institute of Management
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